Predicting off-target effects for end-to-end CRISPR guide design

  • ,
  • Jennifer Listgarten ,
  • Melih Elibol ,
  • John Doench ,
  • Michael Weinstein ,
  • Luong Hoang

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To enable more effective guide design we have developed the first machine learning-based approach to assess CRISPR/Cas9 off-target effects. Our approach consistently and substantially outperformed the state-of the-art over multiple, independent data sets, yielding up to a 6-fold improvement in accuracy. Because of the large computational demands of the task, we also developed a cloud-based service for end-to-end guide design which incorporates our previously reported on-target model, Azimuth, as well as our new off-target model, Elevation (https://www.microsoft.com/en-us/research/project/crispr)